b553c957f3
Co-Authored-By: Claude Opus 4.8 (1M context) <noreply@anthropic.com>
172 lines
7.1 KiB
Python
172 lines
7.1 KiB
Python
# metadata/parser.py
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import json
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import logging
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from pathlib import Path
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from typing import Optional, Dict, Any, Tuple
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from PIL import Image
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import piexif
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import piexif.helper
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logger = logging.getLogger("ComfyGallery.MetadataParser")
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class MetadataParser:
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@staticmethod
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def extract_raw_metadata(filepath: str) -> Tuple[Optional[str], Optional[str]]:
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path = Path(filepath)
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if not path.exists():
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return None, None
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suffix = path.suffix.lower()
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if suffix in ('.png', '.webp'):
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return MetadataParser._extract_from_png_webp(path)
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elif suffix in ('.jpg', '.jpeg'):
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return MetadataParser._extract_from_jpeg(path)
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return None, None
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@staticmethod
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def _extract_from_png_webp(path: Path) -> Tuple[Optional[str], Optional[str]]:
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try:
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with Image.open(path) as img:
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info = img.info
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prompt = info.get("prompt")
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workflow = info.get("workflow")
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if not prompt and "comment" in info:
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prompt = info.get("comment")
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return prompt, workflow
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except Exception as e:
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logger.error(f"Ошибка чтения PNG/WebP метаданных {path.name}: {e}")
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return None, None
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@staticmethod
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def _extract_from_jpeg(path: Path) -> Tuple[Optional[str], Optional[str]]:
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try:
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with Image.open(path) as img:
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if "exif" not in img.info:
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return None, None
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exif_dict = piexif.load(img.info["exif"])
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user_comment_bytes = exif_dict.get("Exif", {}).get(piexif.ExifIFD.UserComment, b"")
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if not user_comment_bytes:
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return None, None
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try:
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comment_str = piexif.helper.UserComment.load(user_comment_bytes)
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except ValueError:
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comment_str = user_comment_bytes.decode('utf-8', errors='ignore')
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if comment_str.startswith("{"):
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try:
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data = json.loads(comment_str)
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prompt = data.get("prompt")
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workflow = data.get("workflow")
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if isinstance(prompt, dict):
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prompt = json.dumps(prompt)
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if isinstance(workflow, dict):
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workflow = json.dumps(workflow)
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return prompt, workflow
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except json.JSONDecodeError:
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return comment_str, None
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return None, None
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except Exception as e:
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logger.error(f"Ошибка чтения JPEG EXIF {path.name}: {e}")
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return None, None
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@classmethod
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def parse_comfy_parameters(cls, prompt_json_str: Optional[str]) -> Dict[str, Any]:
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result = {
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"positive_prompt": None, "negative_prompt": None, "seed": None,
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"model_name": None, "sampler": None, "steps": None, "cfg": None
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}
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if not prompt_json_str:
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return result
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try:
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prompt_graph = json.loads(prompt_json_str)
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if not isinstance(prompt_graph, dict):
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return result
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except json.JSONDecodeError:
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return result
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sampler_node = None
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for node_id, node in prompt_graph.items():
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class_type = node.get("class_type", "")
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if "KSampler" in class_type:
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sampler_node = node
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break
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if sampler_node:
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inputs = sampler_node.get("inputs", {})
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result["seed"] = inputs.get("seed") or inputs.get("noise_seed")
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result["steps"] = inputs.get("steps")
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result["cfg"] = inputs.get("cfg")
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result["sampler"] = inputs.get("sampler_name")
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result["positive_prompt"] = cls._trace_conditioning(inputs.get("positive"), prompt_graph)
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result["negative_prompt"] = cls._trace_conditioning(inputs.get("negative"), prompt_graph)
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result["model_name"] = cls._trace_model(inputs.get("model"), prompt_graph)
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else:
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positives = []
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for node in prompt_graph.values():
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if node.get("class_type") == "CLIPTextEncode":
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text = node.get("inputs", {}).get("text", "")
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if text and len(text.strip()) > 0:
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positives.append(text.strip())
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if positives:
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result["positive_prompt"] = "\n---\n".join(positives)
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def clean_string(val) -> Optional[str]:
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if val is None: return None
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if isinstance(val, list):
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if all(isinstance(x, str) for x in val):
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return "\n".join(val)
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return json.dumps(val)
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if isinstance(val, dict): return json.dumps(val)
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return str(val)
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def clean_int(val) -> Optional[int]:
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if val is None or isinstance(val, (list, dict)): return None
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try: return int(val)
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except (ValueError, TypeError): return None
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def clean_float(val) -> Optional[float]:
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if val is None or isinstance(val, (list, dict)): return None
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try: return float(val)
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except (ValueError, TypeError): return None
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result["positive_prompt"] = clean_string(result["positive_prompt"])
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result["negative_prompt"] = clean_string(result["negative_prompt"])
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result["model_name"] = clean_string(result["model_name"])
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result["sampler"] = clean_string(result["sampler"])
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result["seed"] = clean_int(result["seed"])
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result["steps"] = clean_int(result["steps"])
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result["cfg"] = clean_float(result["cfg"])
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return result
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@classmethod
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def _trace_conditioning(cls, link: Optional[list], graph: dict) -> Optional[str]:
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if not link or not isinstance(link, list) or len(link) < 1:
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return None
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node_id = str(link[0])
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node = graph.get(node_id)
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if not node:
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return None
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class_type = node.get("class_type", "")
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inputs = node.get("inputs", {})
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if class_type in ("CLIPTextEncode", "CLIPTextEncodeSDXL", "CLIPTextEncodeSequence"):
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return inputs.get("text") or inputs.get("text_g")
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if "Conditioning" in class_type:
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for key, val in inputs.items():
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if isinstance(val, list) and len(val) >= 1:
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text = cls._trace_conditioning(val, graph)
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if text: return text
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return None
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@classmethod
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def _trace_model(cls, link: Optional[list], graph: dict) -> Optional[str]:
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if not link or not isinstance(link, list) or len(link) < 1:
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return None
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node_id = str(link[0])
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node = graph.get(node_id)
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if not node:
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return None
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class_type = node.get("class_type", "")
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inputs = node.get("inputs", {})
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if "CheckpointLoader" in class_type:
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return inputs.get("ckpt_name")
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elif "LoraLoader" in class_type or "ModelMerge" in class_type:
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return cls._trace_model(inputs.get("model"), graph)
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return None |